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Machine learning predictions of code-based seismic vulnerability for reinforced concrete and masonry buildings: Insights from a 300-building database

Angelo Aloisio, Yuri De Santis, Francesco Irti, Dag Pasquale Pasca, Leonardo Scimia, Massimo Fragiacomo

2023Engineering Structures25 citationsDOIOpen Access PDF

Abstract

This paper proposes a data-driven model for predicting the code-based seismic vulnerability index calibrated on a dataset comprising almost 300 buildings. The vulnerability index, estimated following the Italian Seismic Code, involved rigorous investigations, including geometric surveys, experimental tests, and numerical modelling. Leveraging data from these investigations, encompassing approximately 15 categorical and numerical explanatory variables, the authors developed several regression and classification predictive models, such as Logistic Regression and Artificial Neural Networks (ANN). The optimal models perform binary classification to determine the categorization into two macro-classes, defined by an arbitrary vulnerability threshold. The ANN model stands out as the best performer. When adjusting the vulnerability threshold to obtain a balanced dataset, such a model achieves an accuracy higher than 85%. The paper also discusses the importance of each feature by calculating the SHapley Additive exPlanations (SHAP) values. The proposed model can aid decision-makers in allocating resources effectively to mitigate seismic risks of built environments.

Topics & Concepts

MasonryVulnerability (computing)Code (set theory)Reinforced concreteVulnerability assessmentComputer scienceDatabaseEngineeringConstruction engineeringCivil engineeringForensic engineeringStructural engineeringProgramming languageComputer securityPsychological resiliencePsychologySet (abstract data type)PsychotherapistStructural Health Monitoring TechniquesSeismic Performance and AnalysisInfrastructure Maintenance and Monitoring
Machine learning predictions of code-based seismic vulnerability for reinforced concrete and masonry buildings: Insights from a 300-building database | Litcius